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Quantitative structure-activity relationships (QSARs) for estrogen binding to the estrogen receptor: predictions across species.

机译:雌激素与雌激素受体结合的定量构效关系(QSAR):跨物种的预测。

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摘要

The recognition of adverse effects due to environmental endocrine disruptors in humans and wildlife has focused attention on the need for predictive tools to select the most likely estrogenic chemicals from a very large number of chemicals for subsequent screening and/or testing for potential environmental toxicity. A three-dimensional quantitative structure-activity relationship (QSAR) model using comparative molecular field analysis (CoMFA) was constructed based on relative binding affinity (RBA) data from an estrogen receptor (ER) binding assay using calf uterine cytosol. The model demonstrated significant correlation of the calculated steric and electrostatic fields with RBA and yielded predictions that agreed well with experimental values over the entire range of RBA values. Analysis of the CoMFA three-dimensional contour plots revealed a consistent picture of the structural features that are largely responsible for the observed variations in RBA. Importantly, we established a correlation between the predicted RBA values for calf ER and their actual RBA values for human ER. These findings suggest a means to begin to construct a more comprehensive estrogen knowledge base by combining RBA assay data from multiple species in 3D-QSAR based predictive models, which could then be used to screen untested chemicals for their potential to bind to the ER. Another QSAR model was developed based on classical physicochemical descriptors generated using the CODESSA (Comprehensive Descriptors for Structural and Statistical Analysis) program. The predictive ability of the CoMFA model was superior to the corresponding CODESSA model.
机译:对人类和野生生物中环境内分泌干扰物引起的不利影响的认识使注意力集中在对预测工具的需求上,该预测工具需要从大量化学物中选择最可能的雌激素化学物,以用于随后的筛选和/或测试潜在的环境毒性。基于使用牛犊胞质溶胶的雌激素受体(ER)结合测定的相对结合亲和力(RBA)数据,构建了使用比较分子场分析(CoMFA)的三维定量构效关系(QSAR)模型。该模型展示了所计算的空间和静电场与RBA的显着相关性,并得出了与RBA整个值范围内的实验值吻合良好的预测。对CoMFA三维轮廓图的分析显示出一致的结构特征图片,这些特征是造成RBA中观察到的变化的主要原因。重要的是,我们在小牛ER的预测RBA值与人类ER的实际RBA值之间建立了相关性。这些发现表明,通过在基于3D-QSAR的预测模型中结合来自多个物种的RBA测定数据,可以开始构建更全面的雌激素知识库的方法,然后可以将其用于筛选未经测试的化学物质与ER结合的潜力。根据使用CODESSA(结构和统计分析的综合描述符)程序生成的经典物理化学描述符,开发了另一个QSAR模型。 CoMFA模型的预测能力优于相应的CODESSA模型。

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